A method of identifying fish surface pathology based on dual attention mechanism
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Affiliation:

1.College of Informatics, Huazhong Agricultural University, Wuhan 430070, China;2.Key Laboratory of Smart Farming for Agricultural Animals, Ministry of Agriculture and Rural Affairs,Wuhan 430070, China

Clc Number:

S941;TP391.41;TP18

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    Abstract:

    The dataset of fish surface pathology was constructed based on four types of fish diseases with high rate of incidence and great harm to fish to improve the accuracy and efficiency of identifying fish surface pathology and solve the problems of heavy reliance on manual labor and low accuracy of identification in the process of identification at present. An improved and optimized DBA_Resnet-18 model with high accuracy of identification based on the Resnet-18 model was constructed by integrating spatial attention and SE channel attention dual attention mechanism. A real-time intelligent visualization system for identifying fish diseases was developed based on this model as well. The improved model incorporates SE channel attention module in the middle of the network and introduces spatial attention mechanism at the end of the network. The results of testing showed that the accuracy of the DBA_Resnet-18 model in classifying fish surface pathology reached 96.75%, which was 1.71, 2.12, 2.37, 2.83, 2.51, 2.23, 2.50, and 3.53 percent points higher than that of the commonly used models including Resnet-18, Resnet-34, Resnet-50, Resnet-101, Swin Transformer, VGG-16, VGG-19, and AlexNet, respectively. It is indicated that the proposed model and the developed intelligent visualization system for identifying fish diseases can quickly and accurately classify and identify different fish surface pathologies, realizing the intelligence of the system for identifying fish diseases, which can be used to diagnose the types of fish surface pathology in practical environments.

    Fig.1 Pathological images of fish surface
    Fig.2 Resnet-18 network structure diagram
    Fig.3 Schematic diagram of resdual network structure
    Fig.4 Spatial attention mechanism illustration
    Fig.5 SE channel attention module illustration
    Fig.6 Fish surface pathology recognition model architecture diagram
    Fig.7 DBA_Resnet-18 activation mapping
    Fig.8 Intelligent visualization system for fish surface pathology recognition
    Table 1 Comparison of four network ablation modules
    Table 2 Comparison of fish disease image classification results
    Table 3 Comparison of species classification results across different models
    Table 4 Comparison of identification results for surface pathologies of four fish species
    Table 5 Model complexity comparison results
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王一非,袁涛,吴鹏飞. A method of identifying fish surface pathology based on dual attention mechanism[J]. Jorunal of Huazhong Agricultural University,2025,44(2):73-82.

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History
  • Received:November 03,2023
  • Online: April 02,2025
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